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首页> 外文期刊>Geoderma: An International Journal of Soil Science >Soil subgroup prediction via portable X-ray fluorescence and visible near-infrared spectoscopy
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Soil subgroup prediction via portable X-ray fluorescence and visible near-infrared spectoscopy

机译:通过便携式X射线荧光和可见近红外光谱预测土壤亚组预测

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摘要

Recently, portable X-ray fluorescence (pXRF) spectrometer and visible near-infrared (Vis-NIR) spectroscopy are increasingly being applied for soil types and attributes prediction, but a few works have used them combined in tropical regions. Thus, this work aimed at analyzing models performance when predicting soil types at subgroup taxonomic level via pXRF and Vis-NIR separately and together. 315 soil samples were collected in both A and B horizons in three important Brazilian states. Samples undergone laboratorial analyses for soil classification and were submitted to pXRF and Vis-NIR (3502500 nm) analyses. Vis-NIR spectral data preprocessing was evaluated utilizing Savitzky-Golay (WT) and Savitzky-Golay with Binning (WB) methods. Four classification algorithms were employed in modeling: Support Vector Machine with Linear (SVM-L) and Radial (SVM-R) kernel, C5.0, and Random Forest (RF). Predictions were made using only B horizon and using A + B horizon data. Overall accuracy and Cohens Kappa index evaluated model quality. Both sensors displayed efficacy in soil types prediction. A + B horizons data combined using pXRF + Vis-NIR via SVM-R (WT and WB) delivered accurate predictions (89.32% overall accuracy and 0.75 Kappa index), but the best predictions were achieved using only B horizon data via pXRF with RF, pXRF + Vis-NIR (WT) with RF, pXRF + Vis-NIR (WB) with C5.0, and pXRF + Vis-NIR (WB) with RF (89.23% overall accuracy and 0.80 Kappa index). For tropical soils, soil subgroup prediction using only B horizon data obtained by pXRF in tandem with RF algorithm may be a viable alternative to assist in soil classification, especially when the acquisition of Vis-NIR is not possible.
机译:最近,便携式X射线荧光(PXRF)光谱仪和可见的近红外(Vis-NIR)光谱越来越多地应用于土壤类型和属性预测,但是一些作品已经在热带地区组合使用它们。因此,当通过PXRF和Vis-nir分别和一起通过PXRF和Vis-Nir预测亚组分类水平的土壤类型时,旨在分析模型性能的工作。在三个重要的巴西州的A和B个地域中收集了315种土壤样品。样品经过实验室分析的土壤分类,并提交给PXRF和Vis-Nir(3502500nm)分析。利用Savitzky-golay(WT)和Savitzky-Golay进行评估VIS-NIR光谱数据预处理,并用沥青(WB)方法。使用四种分类算法在建模中使用:支持矢量机,具有线性(SVM-L)和径向(SVM-R)核,C5.0和随机林(RF)。仅使用B Horizo​​ n并使用A + B个地平线数据进行预测。总体准确性和科赫卡指数评估了模型质量。两个传感器在土壤类型预测中显示出疗效。通过SVM-R(WT和WB)使用PXRF + Vis-NIR组合的A + B个地域数据提供精确的预测(总体精度和0.75 kappa指数),但仅通过PXRF与RF使用B个地平线数据来实现最佳预测,具有RF,PXRF + Vis-Nir(WB)的PXRF + Vis-Nir(WT),具有C5.0和PXRF + Vis-Nir(WB),具有RF(总体精度89.23%和0.80 kappa指数)。对于热带土壤,使用RF算法的PXRF仅使用PXRF获得的土壤亚组预测可能是有助于辅助土壤分类的可行替代品,特别是当不可能获取Vis-Nir时。

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